Knowledge translation (KT) is the exchange between knowledge producers and users to understand, synthesize, share, and apply evidence to accelerate the benefits of research to improve health and health systems. Knowledge translation practice (activities/strategies to move evidence into practice) and KT science (study of the methodology and approaches to promote the uptake of research) benefit from the use of conceptual thinking, the meaningful inclusion of patients, and the application of intersectionality. In spite of multiple barriers, there are opportunities to develop strong partnerships and evidence to drive an impactful research agenda and increase the uptake of cardiovascular research.

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http://dx.doi.org/10.1093/eurjcn/zvad077DOI Listing

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